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Crowd behavior understanding through SIOF feature analysis

机译:通过SIOF特征分析了解人群行为

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Realizing the automated and online detection of crowd anomalies from surveillance CCTVs is a research-intensive and application-demanding task. This research proposes a novel technique for detecting crowd abnormalities through analyzing the spatial and temporal features of the input video signals. This integrated solution defines an image descriptor that reflects the global motion information over time. A non-linear SVM has then been adopted to classify dominant or large-scale crowd abnormal behaviors. The work reported has focused on: 1) online (or near real-time) detection of moving objects through a background subtraction model, namely ViBe; and to identify the saliency information as a spatial feature in addition to the optical flow of the motion foreground as the temporal feature; 2) to combine the extracted spatial and temporal features into a novel SIOF descriptor that encapsulates the global movement characteristic of a crowd; 3) the optimization of a nonlinear support vector machine (SVM) as classifier to detect suspicious crowd behaviors. The test and evaluation of the devised models and techniques have selected the BEHAVE database as the primary experimental data sets. Results against benchmarking models and systems have shown promising advancements in terms of the accuracy and efficiency for detecting crowd anomalies.
机译:从监视闭路电视实现人群异常的自动在线检测是一项研究密集且需要大量应用的任务。这项研究提出了一种通过分析输入视频信号的时空特征来检测人群异常的新技术。该集成解决方案定义了一个图像描述符,该描述符反映了一段时间内的全​​局运动信息。然后采用非线性支持向量机对主要或大规模人群异常行为进行分类。报告的工作集中在:1)通过背景扣除模型ViBe在线(或近实时)检测运动对象;除了将运动前景的光流作为时间特征之外,还将显着性信息识别为空间特征; 2)将提取的时空特征组合成一个新颖的SIOF描述符,该描述符封装了人群的整体运动特征; 3)优化非线性支持向量机(SVM)作为分类器,以检测可疑人群行为。对设计的模型和技术的测试和评估选择了BEHAVE数据库作为主要的实验数据集。基准测试模型和系统的结果表明,在检测人群异常的准确性和效率方面取得了令人鼓舞的进步。

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